The financial fraud detection using machine learning

Authors

  • Андрій Олексійович Фесенко Taras Shevchenko National University of Kyiv
  • Ганна Костянтинівна Папірна Taras Shevchenko National University of Kyiv
  • Мадіна Бауиржанівна Бауиржан Satbayev University, Almaty, Republic of Kazakhstan

DOI:

https://doi.org/10.18372/2410-7840.21.13769

Keywords:

financial fraud detection systems, machine learning, cloud services, decision support systems, security of operations

Abstract

The financial fraud detection system using machine learning is a modern tool for ensuring information security in financial institutions and commercial organizations. The relevance of this work is due to an increase in trends in the development of the use of cashless transactions, together with an increase in criminal offenses related to payment card fraud. An analysis of the research of scientists on this topic is provided and it shows that they cover the individual components of building a financial fraud detection system, but do not describe the complete cycle of the development and implementation of such a system. The two fundamentally different approaches to identifying financial fraud are considered – based on rules and based on machine learning tools. The advantage of using machine learning tools is substantiated in the context of improving the usability of the system, increasing the accuracy of fraud detection and possible integration with behavioral analytics systems. In this paper, the problem of detecting financial fraud with payment cards is formalized in machine learning terminology. The choice of the mathematical apparatus for the functioning of the model of detecting financial fraud with payment cards is substantiated. Mathematical algorithms are adapted to solve the problem of transaction classification and a step-by-step algorithm for the implementation of this machine learning task is given. The technical implementation of the system for detecting financial fraud with payment cards based on Microsoft Azure cloud services is developed and substantiated. The effectiveness of the proposed system for detecting fraudulent transactions is assessed, where sensitivity and specificity are selected as the criteria for efficiency being generally accepted indicators in machine learning theory.

Author Biographies

Андрій Олексійович Фесенко, Taras Shevchenko National University of Kyiv

PhD, assistant of the Cybersecurity and Information Security Department of the Information Technology Faculty, Taras Shevchenko National University of Kyiv

Ганна Костянтинівна Папірна, Taras Shevchenko National University of Kyiv

student of the Cybersecurity and Information Security Department of the Information Technology Faculty of Taras Shevchenko National University of Kyiv

Мадіна Бауиржанівна Бауиржан, Satbayev University, Almaty, Republic of Kazakhstan

PhD Student, Satbayev University, Almaty, Republic of Kazakhstan

References

Національний банк України. Огляд ринку платі-жних карток та платіжної інфраструктури Украї-ни за 2018 рік. [Електронний ресурс]. Режим до-ступу: https://bank.gov.ua/doccatalog/document?id=88661687.

Департамент кіберполіції. Підсумки 2018 року в цифрах. [Електронний ресурс]. Режим доступу до ресурсу: https://cyberpolice.gov.ua/results/2018/.

П. Равенков, А. Пухов, Л. Лямин, Мошенничество в платежной сфере. Бизнес-энциклопедия. М.: Интеллек-туальная Литература, 2015, 345 с.

К. Воронцов, Математические методы обучения по прецедентам (теория обучения машин). [Електронний ресурс]. Режим доступу до ресурсу: http://www. machinelearning.ru/wiki/images/6/6d/Voron-ML-1.pdf.

B. Baesens, V. Van Vlasselaer, W. Verbeke, Fraud analytics using descriptive, predictive, and social network tech-niques : a guide to data science for fraud detection. Canada: Wiley & SAS business series, 2015, 400 p.

A. Tselykh, D. Petukhov, "Web service for detect-ing credit card fraud in near real-time", SIN '15 Pro-ceedings of the 8th International Conference on Security of In-formation and Networks, pp. 114-117, 2015.

A. Shrivastava, T. Deshpande, Hadoop-Blueprints [Електронний ресурс]. Режим доступу: https:// github.com/PacktPublishing/Hadoop-Blueprints/ tree/master/Chapter%2003.

Published

2019-06-27

Issue

Section

Articles